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Analytics: The Most Important Business Process in Your Organization

Timo Elliott

It’s time to take analytics seriously!

That might sound strange – after all, analytics has been at the top of Gartner’s CIO technology priorities for decades.

But despite that, analytics is still too often treated as an afterthought, as something used to track the effectiveness of business processes, or as a set of tools for making pretty visualizations and telling “data stories.”

It’s time to change that perception. In an era of digital transformation, analytics is now the most important business process in our organizations – and it’s time for us to start treating it like one.

According to Gartner, today’s CIOs are responsible for building the “civilization infrastructures” that are not just going to reshape business, but also the way we live.

There are five domains that make up these digital platforms: IT systems, customer experiences, things, intelligence, and the ecosystem foundation. The domains are interconnected and independent and organizations will focus on the one or few with the most impact for them, but it’s clear that intelligence — i.e., data and analytics — is at the heart of the organizations of the future.

For the last few decades, we’ve typically thought of business intelligence as a byproduct of our operational processes. We manufacture products, ship them around the world, and sell them to customers. Each of these processes generates a lot of data, and we use that data both to keep track of operations and to create more optimized processes in the future.

This remains as true and important today as it’s ever been in the past. But organizations are increasingly realizing that digital transformation doesn’t just require new processes – it requires a new approach to creating and implementing business processes. They need to be more agile, more intelligent, and more responsive to change.

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These new processes flip the traditional equation on its head. New processes are created on the fly by analytics.

The typical customer journey is a great example. Think about how you purchase products today. In the old days, it was a fairly linear process that companies could characterize as a “sales funnel.” But now it’s more like a “write your own adventure” book – where there are many different possible interaction paths, and at each point in the process, you as a customer get to choose the next chapter and the next point of interaction.

The job of modern marketers is to optimize the whole system of touch points to maximize the flow of satisfied customers. And to do that, they rely on analytics, to guide the customer at each point – “you may be interested in these other products” or “here’s a discount if you purchase now.”

In the new world, it’s no longer about having a “customer process,” it’s about creating thousands or millions of personalized “processes” on the fly, based on the needs of each individual.

Because these new processes are analytics-powered, they can be much more agile and responsive to change – indeed, with new machine learning approaches, they can even update themselves, automatically adjusting to consumer behavior.

And this doesn’t just apply to marketing. We see the growth of similar on-the-fly processes in every other area of modern business, from production and logistics to finance and human resources.

Effectively creating and managing these kinds of flexible, on-the-fly processes is the big new opportunity in digital business.

In the next post, I’ll give examples of how the latest analytics technologies are enabling more process-driven approaches to optimizing information use in modern organizations.

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Timo Elliott

About Timo Elliott

Timo Elliott is an Innovation Evangelist for SAP and a passionate advocate of analytics, business intelligence, and digital transformation. He was the eighth employee of BusinessObjects and for the last 25 years, he has worked closely with SAP customers around the world on new technology directions and their impact on real-world organizations. His articles appear regularly in publications such as Forbes, ZDNet, The Guardian, and Digitalist Magazine. He has worked in the UK, Hong Kong, New Zealand, and Silicon Valley, and currently lives in Paris, France. He has a degree in Econometrics and a patent in mobile analytics. 

Data Analysts And Scientists More Important Than Ever For The Enterprise

Daniel Newman

The business world is now firmly in the age of data. Not that data wasn’t relevant before; it was just nowhere close to the speed and volume that’s available to us today. Businesses are buckling under the deluge of petabytes, exabytes, and zettabytes. Within these bytes lie valuable information on customer behavior, key business insights, and revenue generation. However, all that data is practically useless for businesses without the ability to identify the right data. Plus, if they don’t have the talent and resources to capture the right data, organize it, dissect it, draw actionable insights from it and, finally, deliver those insights in a meaningful way, their data initiatives will fail.

Rise of the CDO

Companies of all sizes can easily find themselves drowning in data generated from websites, landing pages, social streams, emails, text messages, and many other sources. Additionally, there is data in their own repositories. With so much data at their disposal, companies are under mounting pressure to utilize it to generate insights. These insights are critical because they can (and should) drive the overall business strategy and help companies make better business decisions. To leverage the power of data analytics, businesses need more “top-management muscle” specialized in the field of data science. This specialized field has lead to the creation of roles like Chief Data Officer (CDO).

In addition, with more companies undertaking digital transformations, there’s greater impetus for the C-suite to make data-driven decisions. The CDO helps make data-driven decisions and also develops a digital business strategy around those decisions. As data grows at an unstoppable rate, becoming an inseparable part of key business functions, we will see the CDO act as a bridge between other C-suite execs.

Data skills an emerging business necessity

So far, only large enterprises with bigger data mining and management needs maintain in-house solutions. These in-house teams and technologies handle the growing sets of diverse and dispersed data. Others work with third-party service providers to develop and execute their big data strategies.

As the amount of data grows, the need to mine it for insights becomes a key business requirement. For both large and small businesses, data-centric roles will experience endless upward mobility. These roles include data anlysts and scientists. There is going to be a huge opportunity for critical thinkers to turn their analytical skills into rapidly growing roles in the field of data science. In fact, data skills are now a prized qualification for titles like IT project managers and computer systems analysts.

Forbes cited the McKinsey Global Institute’s prediction that by 2018 there could be a massive shortage of data-skilled professionals. This indicates a disruption at the demand-supply level with the needs for data skills at an all-time high. With an increasing number of companies adopting big data strategies, salaries for data jobs are going through the roof. This is turning the position into a highly coveted one.

According to Harvard Professor Gary King, “There is a big data revolution. The big data revolution is that now we can do something with the data.” The big problem is that most enterprises don’t know what to do with data. Data professionals are helping businesses figure that out. So if you’re casting about for where to apply your skills and want to take advantage of one of the best career paths in the job market today, focus on data science.

I’m compensated by University of Phoenix for this blog. As always, all thoughts and opinions are my own.

For more insight on our increasingly connected future, see The $19 Trillion Question: Are You Undervaluing The Internet Of Things?

The post Data Analysts and Scientists More Important Than Ever For the Enterprise appeared first on Millennial CEO.

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Daniel Newman

About Daniel Newman

Daniel Newman serves as the Co-Founder and CEO of EC3, a quickly growing hosted IT and Communication service provider. Prior to this role Daniel has held several prominent leadership roles including serving as CEO of United Visual. Parent company to United Visual Systems, United Visual Productions, and United GlobalComm; a family of companies focused on Visual Communications and Audio Visual Technologies. Daniel is also widely published and active in the Social Media Community. He is the Author of Amazon Best Selling Business Book "The Millennial CEO." Daniel also Co-Founded the Global online Community 12 Most and was recognized by the Huffington Post as one of the 100 Business and Leadership Accounts to Follow on Twitter. Newman is an Adjunct Professor of Management at North Central College. He attained his undergraduate degree in Marketing at Northern Illinois University and an Executive MBA from North Central College in Naperville, IL. Newman currently resides in Aurora, Illinois with his wife (Lisa) and his two daughters (Hailey 9, Avery 5). A Chicago native all of his life, Newman is an avid golfer, a fitness fan, and a classically trained pianist

When Good Is Good Enough: Guiding Business Users On BI Practices

Ina Felsheim

Image_part2-300x200In Part One of this blog series, I talked about changing your IT culture to better support self-service BI and data discovery. Absolutely essential. However, your work is not done!

Self-service BI and data discovery will drive the number of users using the BI solutions to rapidly expand. Yet all of these more casual users will not be well versed in BI and visualization best practices.

When your user base rapidly expands to more casual users, you need to help educate them on what is important. For example, one IT manager told me that his casual BI users were making visualizations with very difficult-to-read charts and customizing color palettes to incredible degrees.

I had a similar experience when I was a technical writer. One of our lead writers was so concerned with readability of every sentence that he was going through the 300+ page manuals (yes, they were printed then) and manually adjusting all of the line breaks and page breaks. (!) Yes, readability was incrementally improved. But now any number of changes–technical capabilities, edits, inserting larger graphics—required re-adjusting all of those manual “optimizations.” The time it took just to do the additional optimization was incredible, much less the maintenance of these optimizations! Meanwhile, the technical writing team was falling behind on new deliverables.

The same scenario applies to your new casual BI users. This new group needs guidance to help them focus on the highest value practices:

  • Customization of color and appearance of visualizations: When is this customization necessary for a management deliverable, versus indulging an OCD tendency? I too have to stop myself from obsessing about the font, line spacing, and that a certain blue is just a bit different than another shade of blue. Yes, these options do matter. But help these casual users determine when that time is well spent.
  • Proper visualizations: When is a spinning 3D pie chart necessary to grab someone’s attention? BI professionals would firmly say “NEVER!” But these casual users do not have a lot of depth on BI best practices. Give them a few simple guidelines as to when “flash” needs to subsume understanding. Consider offering a monthly one-hour Lunch and Learn that shows them how to create impactful, polished visuals. Understanding if their visualizations are going to be viewed casually on the way to a meeting, or dissected at a laptop, also helps determine how much time to spend optimizing a visualization. No, you can’t just mandate that they all read Tufte.
  • Predictive: Provide advanced analytics capabilities like forecasting and regression directly in their casual BI tools. Using these capabilities will really help them wow their audience with substance instead of flash.
  • Feature requests: Make sure you understand the motivation and business value behind some of the casual users’ requests. These casual users are less likely to understand the implications of supporting specific requests across an enterprise, so make sure you are collaborating on use cases and priorities for substantive requests.

By working with your casual BI users on the above points, you will be able to collectively understand when the absolute exact request is critical (and supports good visualization practices), and when it is an “optimization” that may impact productivity. In many cases, “good” is good enough for the fast turnaround of data discovery.

Next week, I’ll wrap this series up with hints on getting your casual users to embrace the “we” not “me” mentality.

Read Part One of this series: Changing The IT Culture For Self-Service BI Success.

Follow me on Twitter: @InaSAP

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The Future of Cybersecurity: Trust as Competitive Advantage

Justin Somaini and Dan Wellers

 

The cost of data breaches will reach US$2.1 trillion globally by 2019—nearly four times the cost in 2015.

Cyberattacks could cost up to $90 trillion in net global economic benefits by 2030 if cybersecurity doesn’t keep pace with growing threat levels.

Cyber insurance premiums could increase tenfold to $20 billion annually by 2025.

Cyberattacks are one of the top 10 global risks of highest concern for the next decade.


Companies are collaborating with a wider network of partners, embracing distributed systems, and meeting new demands for 24/7 operations.

But the bad guys are sharing intelligence, harnessing emerging technologies, and working round the clock as well—and companies are giving them plenty of weaknesses to exploit.

  • 33% of companies today are prepared to prevent a worst-case attack.
  • 25% treat cyber risk as a significant corporate risk.
  • 80% fail to assess their customers and suppliers for cyber risk.

The ROI of Zero Trust

Perimeter security will not be enough. As interconnectivity increases so will the adoption of zero-trust networks, which place controls around data assets and increases visibility into how they are used across the digital ecosystem.


A Layered Approach

Companies that embrace trust as a competitive advantage will build robust security on three core tenets:

  • Prevention: Evolving defensive strategies from security policies and educational approaches to access controls
  • Detection: Deploying effective systems for the timely detection and notification of intrusions
  • Reaction: Implementing incident response plans similar to those for other disaster recovery scenarios

They’ll build security into their digital ecosystems at three levels:

  1. Secure products. Security in all applications to protect data and transactions
  2. Secure operations. Hardened systems, patch management, security monitoring, end-to-end incident handling, and a comprehensive cloud-operations security framework
  3. Secure companies. A security-aware workforce, end-to-end physical security, and a thorough business continuity framework

Against Digital Armageddon

Experts warn that the worst-case scenario is a state of perpetual cybercrime and cyber warfare, vulnerable critical infrastructure, and trillions of dollars in losses. A collaborative approach will be critical to combatting this persistent global threat with implications not just for corporate and personal data but also strategy, supply chains, products, and physical operations.


Download the executive brief The Future of Cybersecurity: Trust as Competitive Advantage.


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To Get Past Blockchain Hype, We Must Think Differently

Susan Galer

Blockchain hype is reaching fever pitch, making it the perfect time to separate market noise from valid signals. As part of my ongoing conversations about blockchain, I reached out to several experts to find out where companies should consider going from here. Raimund Gross, Solution Architect and Futurist at SAP, acknowledged the challenges of understanding and applying such a complex leading-edge technology as blockchain.

“The people who really get it today are those able to put the hype in perspective with what’s realistically doable in the near future, and what’s unlikely to become a reality any time soon, if ever,” Gross said. “You need to commit the resources and find the right partners to lay the groundwork for success.”

Gross told me one of the biggest problems with blockchain – besides the unproven technology itself – was the mindset shift it demands. “Many people aren’t thinking about decentralized architectures with peer-to-peer networks and mash-ups, which is what blockchain is all about. People struggle because often discussions end up with a centralized approach based on past constructs. It will take training and experience to think decentrally.”

Here are several more perspectives on blockchain beyond the screaming headlines.

How blockchain disrupts insurance, banking

Blockchain has the potential to dramatically disrupt industries because the distributed ledger embeds automatic trust across processes. This changes the role of longstanding intermediaries like insurance companies and banks, essentially restructuring business models for entire industries.

“With the distributed ledger, all of the trusted intelligence related to insuring the risk resides in the cloud, providing everyone with access to the same information,” said Nadine Hoffmann, global solution manager for Innovation at SAP Financial Services. “Payment is automatically triggered when the agreed-upon risk scenario occurs. There are limitations given regulations, but blockchain can open up new services opportunities for established insurers, fintech startups, and even consumer-to-consumer offerings.”

Banks face a similar digitalized transformation. Long built on layers of steps to mitigate risk, blockchain offers the banking industry a network of built-in trust to improve efficiencies along with the customer experience in areas such as cross-border payments, trade settlements for assets, and other contractual and payment processes. What used to take days or even months could be completed in hours.

Finance departments evolve

Another group keenly watching blockchain developments are CFOs. Just as Uber and Airbnb have disrupted transportation and hospitality, blockchain has the potential to change not only the finance department — everything from audits and customs documentation to letters of credit and trade finance – but also the entire company.

“The distributed ledger’s capabilities can automate processes in shared service centers, allowing accountants and other employees in finance to speed up record keeping including proof of payment supporting investigations,” said Georg Koester, senior developer, LoB Finance at the Innovation Center Potsdam. “This lowers costs for the company and improves the customer experience.”

Koester said that embedding blockchain capabilities in software company-wide will also have a tremendous impact on product development, lean supply chain management, and other critical areas of the company.

While financial services dominate blockchain conversations right now, Gross named utilities, healthcare, public sector, real estate, and pretty much any industry as prime candidates for blockchain disruption. “Blockchain is specific to certain business scenarios in any industry,” said Gross. “Every organization can benefit from trust and transparency that mitigates risk and optimizes processes.”

Get started today! Run Live with SAP for Banking. Blast past the hype by attending the SAP Next-Gen Boot Camp on Blockchain in Financial Services and Public Sector event being held April 26-27 in Regensdorf, Switzerland.

Follow me on Twitter, SCN Business Trends, or Facebook. Read all of my Forbes articles here.

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